Constellation Loss em Modelos de Reconhecimento Facial

Detalhes bibliográficos
Ano de defesa: 2022
Autor(a) principal: Santos, Erick Ramos dos
Orientador(a): Não Informado pela instituição
Banca de defesa: Não Informado pela instituição
Tipo de documento: Dissertação
Tipo de acesso: Acesso aberto
Idioma: por
Instituição de defesa: Universidade Federal do Espírito Santo
BR
Mestrado em Engenharia Elétrica
Centro Tecnológico
UFES
Programa de Pós-Graduação em Engenharia Elétrica
Programa de Pós-Graduação: Não Informado pela instituição
Departamento: Não Informado pela instituição
País: Não Informado pela instituição
Palavras-chave em Português:
Link de acesso: http://repositorio.ufes.br/handle/10/16261
Resumo: Feature extracting models for facial recognition systems have become objects of in-depth study over the past few years. In order to find a better discrimination of objects and, consequently, a better separability of classes, loss functions, such as Triplet Loss, were designed to be used in conjunction with Siamese Neural Networks. However, networks with these functions suffer from a slow convergence by considering only two classes (positive and negative) at each learning iteration, thus, they are not appropriate when there is a large number of classes in the dataset. Recently, a loss function called Constellation Loss was proposed in order to minimize these problems. In this work, a model for facial recognition using a Convolutional Neural Network (CNN) as a backbone and Constellation Loss as a loss function is proposed. To validate the model, two public databases were used and comparisons were made with different loss functions and CNNs architectures. It is also proposed in this work the use of an approach for the construction of batches, which allows network training with a reduced memory usage. The results obtained indicate that Constellation Loss is a promising technique when compared to the other loss functions evaluated, reaching average values of AUC (Area Under The Curve) equal to 99.9% in the Olivetti Faces dataset and 98.7% in the challenging Labeled Faces in the Wild (LFW) dataset. The effectiveness of the method could be certified, enabling its application to facial recognition systems.